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Hierarchical Feature-Based Translation for Scalable natural Language Understanding

机译:基于分层的特征的转换,用于可扩展的自然语言理解

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For complex natural language understanding systems with a large number of statistically confusable but semantically different formal commands, there are many difficulties in performing an accurate translation of a user input into a formal command in a single step. This paper addresses scalability issues in natural language understanding, and describes a method for performing the translation in a hierarchical manner. The hierarchical method improves the system accuracy, reduces the computational complexity of the translation, provides additional numerical robustness during training and decoding, and permits a more efficient packaging of the components of the natural language understanding system.
机译:对于复杂的自然语言理解系统具有大量统计上可变的但语义不同的正式命令,在单一步骤中执行用户输入的准确转换在正式命令中存在许多困难。本文解决了自然语言理解中的可扩展性问题,并描述了一种以分层方式执行翻译的方法。分层方法提高了系统精度,降低了转换的计算复杂度,在训练和解码期间提供额外的数值稳健性,并且允许更有效的自然语言理解系统的组件包装。

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